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The Thevenin equivalent based power flow method for integrated transmission and radial distribution networks

机译:基于等等效的基于等效的电流方法,用于集成传输和径向分布网络

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摘要

With the large-scale integration of distributed generations into distribution networks (DNs), collaborative analysis for integrated transmission and distribution (T&D) networks is increasingly important. The fast collaborative power flow method with good convergence plays an important role in the real-time security analysis and off-line planning design for the T&D networks. The master-slave-splitting (MSS) method, a representative power flow method for integrated T&D networks, has more iterations and worse convergence when radial distribution networks (RDNs) have heavy loads, which hinders the analysis and decision-making for coordinated transmission and radial distribution (T&RD) networks. Therefore, this paper deduces theoretically the reason for the MSS method performance deterioration under heavy loads conditions in RDNs, and explore the improvement idea firstly. Then based on the improvement idea, the Thevenin equivalent based power flow (TEBPF) method for integrated T&RD networks is proposed. Known from the theoretical analysis, the TEBPF method can guarantee better convergence and less iterations in the heavily loaded RDNs compared with the MSS method. Simulation results demonstrate the effectiveness of the method proposed and the correctness of the deduction.
机译:随着分布代的大规模集成分配网络(DNS),集成传输和分配(T&D)网络的协作分析越来越重要。具有良好收敛性的快速协作功率流量在T&D网络的实时安全性分析和离线规划设计中起着重要作用。当径向分配网络(RDN)具有重大负载时,主从拆分(MSS)方法,集成T&D网络的代表性电流方法,具有更多的迭代和更糟糕的融合,其阻碍了对协调传输的分析和决策。径向分布(T&RD)网络。因此,本文从理论上阐述了RDNS中重载条件下的MSS方法性能恶化的原因,并首先探索改进思路。然后基于改进思路,提出了一种用于集成T&RD网络的基于等效的基于等效的功率流(TEBPF)方法。从理论分析中已知,与MS方法相比,TEBPF方法可以保证更好地收敛和较高加载的RDN中的迭代。仿真结果表明了该方法提出的有效性和扣除的正确性。

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